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Privacy-Preserving and Reliable Artificial Intelligence to be occupied starting from the 01.10.2022. The Trustworthy and Privacy-Preserving AI Group (PI: PD Dr. Georgios Kaissis) at the Institute for AI in
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science and energy technologies Basic knowledge of artificial intelligence and data analysis methods Programming skills, ideally in Python Independent and analytical way of working Reliable and thorough
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of hydrological models to reliably forecast extreme hydrological events. However, these data sets must initially undergo interpolation before integration into hydrological models. Current research is developing
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: Experience in organic semiconductor processing and characterization High degree of independence, motivation and reliability Excellent ability to cooperate and work in a team Curiosity and fast learning are a
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excursions. The PhD student will work on analysing the reliability of paleomagnetic records, deriving uncertainty estimates, and building time-dependent models of the paleomagnetic field evolution using a
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, motivation and reliability Excellent ability to cooperate and work in a team Curiosity and fast learning are a plus Eligibility for FADOS programme: At the time of recruitment, be in the first four years
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Description Reliable monitoring and control of water systems is essential to protect water resources, ensure hygienic standards, and enable sustainable infrastructure operation. As challenges evolve
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skills, reliability, and flexibility High level of commitment and independent work IT skills We offer Goal-oriented, individual training and development opportunities Working with the latest techniques
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, careful, independent, and reliable working method Strong cooperation and communication skills and the ability to work as part of a team Excellent written and spoken English skills Please note that only
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separately, yet a reliable, open-source tool integrating a shallow-water solver and a multiphase porous-media solver within the same framework is missing. Without this coupling, it is not possible to predict